Machine Learning Street Talk (MLST)

Sakana AI - Chris Lu, Robert Tjarko Lange, Cong Lu

102 snips
Mar 1, 2025
Chris Lu, a recent Oxford DPhil graduate specializing in meta-learning, and Robert Tjarko Lange, a TU Berlin PhD candidate focused on evolutionary algorithms, join forces to discuss innovative approaches to AI. They explore how language models can automate algorithm discovery and enhance training processes. The conversation dives into the interplay of human creativity and AI, addressing challenges like infinite regress in loss functions and the implications of evolutionary optimization. Together, they envision a future where AI systems co-create alongside researchers.
Ask episode
AI Snips
Chapters
Transcript
Episode notes
INSIGHT

LLMs for Algorithm Optimization

  • Language models can help optimize algorithms used to train language models.
  • Their broad training data allows for more extensive trial and error than humans.
INSIGHT

LLMs as Intelligent Mutation Operators

  • LLMs excel at combining concepts from various fields, acting as intelligent mutation operators.
  • This interdisciplinary approach helps discover new algorithms by mixing different concepts.
ANECDOTE

LLMs for Code Generation

  • Ryan Greenblatt used GPT-4 to generate thousands of Python programs for the ARC challenge.
  • Kevin Ellis's group also uses a similar approach, generating snippets and remixing them.
Get the Snipd Podcast app to discover more snips from this episode
Get the app